Mammogram image retrieval via sparse representation

Biomedical Engineering(2011)

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摘要
In recent years there has been a great effort to enhance the computer-aided diagnosis systems, since proven similar pathologies, in the past, plays an important role in diagnosis of the current cases, content based medical image retrieval has been emerged. In this work we have designed a decision making machine in which utilizes sparse representation technique to preserve semantic category relevance among the retrieved images and the query image, this machine comprises optimized wavelets (adapted using lifting scheme) to extract appropriate visual features in order to grasp visual content of the images, afterwards by using some classical methods, Raw data vectors become applicable for sparse representation. We implemented our algorithm on the DDSM database which consists of 2500 studies and their annotations provided by specialists.
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关键词
cancer,content-based retrieval,feature extraction,image retrieval,mammography,medical administrative data processing,visual databases,wavelet transforms,ddsm database,computer-aided diagnosis systems,content based medical image retrieval,decision making machine,mammogram image retrieval,raw data vectors,semantic category relevance preservation,sparse representation technique,visual feature extraction,optimization,sparse representation,lifting scheme,wavelet transform,visualization
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